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arxiv 2506.11074 v1 pith:ZG6MCTLP submitted 2025-06-04 eess.AS cs.LGcs.SD

Challenges in Automated Processing of Speech from Child Wearables: The Case of Voice Type Classifier

classification eess.AS cs.LGcs.SD
keywords speechdataexperimentsfundamentalprogresstypevoiceaimed
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recordings gathered with child-worn devices promised to revolutionize both fundamental and applied speech sciences by allowing the effortless capture of children's naturalistic speech environment and language production. This promise hinges on speech technologies that can transform the sheer mounds of data thus collected into usable information. This paper demonstrates several obstacles blocking progress by summarizing three years' worth of experiments aimed at improving one fundamental task: Voice Type Classification. Our experiments suggest that improvements in representation features, architecture, and parameter search contribute to only marginal gains in performance. More progress is made by focusing on data relevance and quantity, which highlights the importance of collecting data with appropriate permissions to allow sharing.

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